单细胞和大量转录组分析鉴定具有不同临床和分子特征的b细胞亚群和相关癌症亚型。

IF 6.6 2区 医学 Q1 Medicine
Yin He, Li Zhao, Yufen Zheng, Xiaosheng Wang
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引用次数: 0

摘要

背景:先前的研究已经确定了具有促肿瘤和抗肿瘤活性的B细胞亚群,而B细胞亚群特异性标志物在泛癌症中的临床相关性仍未得到充分研究。方法:我们整合了14个scRNA-seq数据集(来自424名患者,15种癌症类型的102,504个细胞),通过无监督聚类来鉴定B细胞亚群。我们通过分析单细胞、体积和空间转录组数据来表征它们的功能动态和预后相关性。此外,利用B细胞亚群特异性基因特征,我们构建了预测癌症预后和免疫治疗反应的模型。结果:我们鉴定出8个B细胞亚群(b00-b07),分为幼稚B细胞、血浆B细胞、记忆B细胞、生发中心B细胞和循环B细胞。轨迹分析显示,b02-naive和b04-GC细胞在早期阶段进化为b01-和b03-血浆/b05-和b06-记忆/b07-循环和b05-记忆亚群。抗肿瘤反应在假时间早期激活,补体/免疫球蛋白途径在假时间中期达到峰值,能量代谢在假时间晚期增加。b07- cycle和b04-GC的富集与肿瘤预后呈负相关,b02-naive的富集与肿瘤预后呈正相关。空间转录组学分析显示b00-b06细胞聚集,而b07细胞分散,b04-GC和b07-循环细胞远离三级淋巴结构核心。基于1047个B细胞亚群特异性特征的表达谱,我们确定了三种具有不同临床和分子特征的泛癌症亚型。利用13个B细胞亚群特异性特征,我们构建了准确预测癌症生存结果和免疫治疗反应的模型。结论:我们的研究描述了8个具有明显预后相关性的B细胞亚群。基于特征的分层和模型强调了它们在癌症结局和治疗反应中的临床相关性,促进了对B细胞在癌症中的异质性的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single-cell and bulk transcriptome analysis identifies B-cell subpopulations and associated cancer subtypes with distinct clinical and molecular characteristics.

Backgroud: Previous studies have identified B cell subpopulations with pro- and anti-tumoral activities, while the clinical relevance of B cell subpopulations-specific markers in pan-cancer remains understudied.

Methods: We integrated 14 scRNA-seq datasets (102,504 cells from 424 patients, 15 cancer types) to identify B cell subpopulations via unsupervised clustering. We characterized their functional dynamics and prognostic relevance through analyzing single-cell, bulk and spatial transcriptomic data. Moreover, using B cell subpopulations-specific gene signatures, we constructed models for predicting cancer prognosis and immunotherapy response.

Results: We identified eight B cell subpopulations (b00-b07) which were classified into naive, plasma, memory, germinal center (GC), and cycling B cells. Trajectory analysis revealed b02-naive and b04-GC cells in early phases, evolving into b01- and b03-plasma/b05- and b06-memory/b07-cycling and b05-memory subpopulations. Anti-tumor responses were activated in early pseudotime, complement/immunoglobulin pathways peaked in mid-pseudotime, and energy metabolism increased in late-pseudotime. The enrichment of b07-cycling and b04-GC was negatively correlated with cancer prognosis, while b02-naive had a positive correlation. Spatial transcriptomic analysis showed clustered b00-b06 versus dispersed b07 cells, with b04-GC and b07-cycling cells distant from tertiary lymphoid structure cores. Based on the expression profiles of 1,047 B cell subpopulations-specific signatures, we identified three pan-cancer subtypes with distinct clinical and molecular characteristics. Using 13 B cell subpopulations-specific signatures, we constructed models to accurately predict cancer survival outcomes and immunotherapy response.

Conclusions: Our study delineates eight B cell subpopulations with distinct prognostic relevance. Signature-based stratification and models underscore their clinical relevance in cancer outcomes and therapy response, advancing understanding of B cell heterogeneity in cancer.

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来源期刊
Cellular Oncology
Cellular Oncology Biochemistry, Genetics and Molecular Biology-Cancer Research
CiteScore
10.40
自引率
1.50%
发文量
0
审稿时长
16 weeks
期刊介绍: The Official Journal of the International Society for Cellular Oncology Focuses on translational research Addresses the conversion of cell biology to clinical applications Cellular Oncology publishes scientific contributions from various biomedical and clinical disciplines involved in basic and translational cancer research on the cell and tissue level, technical and bioinformatics developments in this area, and clinical applications. This includes a variety of fields like genome technology, micro-arrays and other high-throughput techniques, genomic instability, SNP, DNA methylation, signaling pathways, DNA organization, (sub)microscopic imaging, proteomics, bioinformatics, functional effects of genomics, drug design and development, molecular diagnostics and targeted cancer therapies, genotype-phenotype interactions. A major goal is to translate the latest developments in these fields from the research laboratory into routine patient management. To this end Cellular Oncology forms a platform of scientific information exchange between molecular biologists and geneticists, technical developers, pathologists, (medical) oncologists and other clinicians involved in the management of cancer patients. In vitro studies are preferentially supported by validations in tumor tissue with clinicopathological associations.
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